Back to Search Start Over

A feature-based approach for individualized human head modeling

Authors :
Shan Xiong
Yong-Jin Liu
Matthew Ming Fai Yuen
Source :
The Visual Computer. 18:368-381
Publication Year :
2002
Publisher :
Springer Science and Business Media LLC, 2002.

Abstract

The human head is a significant part of the human body, with which we can recognize individuals from a vast universe of populations. Since the early 1970s, considerable effort has been devoted to computeraided modeling of human head for applications varied from realistic effect in computer graphics to custom model generation in modern manufacturing industries. However, realistic head modeling is still a challenge and continues to fascinate computer graphics researchers. The greatest difficulties in human head modeling result from the extremely complex geometric form of the human head. To generate realistic individualized models, most proposed head modeling techniques use the common approach of deforming a generic model into an individualized one, based on individual head information. There are various sources to obtain individual information, e.g., anthropometric data, range data and 2D pictures. Given the individual information, the quality of the resulting individualized model depends on the quality of the generic model and the deformation technique used. In our study, we observe that the mathematical form in which the generic model is represented strongly determines the deformation effect and, thus, determines the quality of the resulting individualized models. During the past few years, the multiresolution modeling technique has been demonstrated to be a powerful tool for highly detailed sculptured object modeling. In our work, we adopt the multiresolution technique for generic head modeling and propose a feature-based deformation technique. We show that using our technique we can generate highly realistic individualized head models with speed and efficiency. We also demonstrate that our proposed technique can result in great efficiency for a wide range of downstream applications.

Details

ISSN :
14322315 and 01782789
Volume :
18
Database :
OpenAIRE
Journal :
The Visual Computer
Accession number :
edsair.doi...........36f36e7875ccea74d6f7ba51b82df62f